Application of Bayesian Artificial Neural Networks for Modeling the Dependence of Nickel-Based Superalloys' Ultimate Tensile Strength on Their Chemical Composition

D. Tarasov, O. Milder, A. Tyagunov
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引用次数: 1

Abstract

Nickel-based superalloys are unique high-temperature materials with complex doping, used, in particular, in gas-turbine engines. These materials exhibit excellent resistance to mechanical and chemical degradation. The main service property of the alloy is its heat resistance, which is expressed, in particular, by the ultimate tensile strength (UTS). When determining the service life of a superalloy product, the developers investigate only certain combinations of temperature parameters and exposure time. The availability of data on the properties of alloys over the entire range of temperatures and time exposures would greatly expand the possibilities of alloys application and would allow more accurate assessment and comparison of alloys. We applied the Bayesian regularized artificial neural network to simulate the missing UTS values for more than 300 well-known superalloys. Network input parameters are the chemical composition and tensile test conditions. Special data pre-processing and a developed learning algorithm significantly reduced the model prediction error. Comparison of the predicted and experimental data showed excellent convergence. A model check was performed on a test data set (10 alloys), which was combined from samples that were not involved in network training.
应用贝叶斯人工神经网络模拟镍基高温合金抗拉强度随化学成分的变化规律
镍基高温合金是一种具有复杂掺杂的独特高温材料,主要用于燃气涡轮发动机。这些材料表现出优异的抗机械和化学降解能力。合金的主要使用性能是它的耐热性,特别是用极限抗拉强度(UTS)来表示。在确定高温合金产品的使用寿命时,开发人员只研究温度参数和暴露时间的某些组合。合金在整个温度和暴露时间范围内的性能数据的可用性将大大扩大合金应用的可能性,并将使合金的评估和比较更加准确。应用贝叶斯正则化人工神经网络模拟了300多种知名高温合金的UTS缺失值。网络输入参数为化学成分和拉伸试验条件。特殊的数据预处理和开发的学习算法显著降低了模型预测误差。预测数据与实验数据的比较显示出较好的收敛性。对测试数据集(10种合金)进行模型检查,该数据集由未参与网络训练的样本组合而成。
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